While recent advancements in artificial intelligence (AI) language models demonstrate cutting-edge performance when working with English texts, equivalent models do not exist in other languages or do not reach the same performance level. This undesired effect of AI advancements increases the gap between access to new technology from different populations across the world. This unsought bias mainly discriminates against individuals whose English skills are less developed, e.g., non-English speakers children. Following significant advancements in AI research in recent years, OpenAI has recently presented DALL-E: a powerful tool for creating images based on English text prompts. While DALL-E is a promising tool for many applications, its decreased performance when given input in a different language, limits its audience and deepens the gap between populations. An additional limitation of the current DALL-E model is that it only allows for the creation of a few images in response to a given input prompt, rather than a series of consecutive coherent frames that tell a story or describe a process that changes over time. Here, we present an easy-to-use automatic DALL-E storytelling framework that leverages the existing DALL-E model to enable fast and coherent visualizations of non-English songs and stories, pushing the limit of the one-step-at-a-time option DALL-E currently offers. We show that our framework is able to effectively visualize stories from non-English texts and portray the changes in the plot over time. It is also able to create a narrative and maintain interpretable changes in the description across frames. Additionally, our framework offers users the ability to specify constraints on the story elements, such as a specific location or context, and to maintain a consistent style throughout the visualization.
翻译:虽然最近人工智能(AI)语言模型的进展表明,在与英文文本合作时,等效模型表现最尖端,但其他语言中不存在等效模型,或者没有达到同样的性能水平。这种不理想的AI进步效应增加了世界各地不同人群获得新技术的机会差距。这种未发现的偏见主要歧视英语技能欠发达的个人,例如非英语儿童。在最近几年AI研究取得显著进展之后,OpenAI最近展示了DAL-E:一个基于英文文本提示的创建图像的强大工具。虽然DALL-E是许多应用程序的一个很有希望的工具,但在以不同语言提供的投入时,其性能降低。目前DALL-E模型的另一个局限性是,它只允许根据特定投入不够发达的个人(例如非英语儿童)创建几幅图像,而不是一系列连续的连贯框架,来讲述故事或描述一个随着时间的推移而变化的过程。在这里,我们展示了一种便于使用自动的DALL-E叙事框架, 在许多应用程序中,它会减少业绩,在以不同语言提供的投入时,它会减少业绩, 使现有的DAL-E模型能够快速和连续地显示一个图像的版本。